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Electrical, Control and Communication Engineering
Volume 14 (2018): Issue 2 (December 2018)
Open Access
Appropriateness of Numbers of Receptive Fields in Convolutional Neural Networks Based on Classifying CIFAR-10 and EEACL26 Datasets
Vadim Romanuke
Vadim Romanuke
| Mar 12, 2019
Electrical, Control and Communication Engineering
Volume 14 (2018): Issue 2 (December 2018)
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Published Online:
Mar 12, 2019
Page range:
157 - 163
DOI:
https://doi.org/10.2478/ecce-2018-0019
Keywords
Convolutional neural networks
,
Convolutional layers
,
Filters
,
Performance
,
Receptive fields
© 2018 Vadim Romanuke, published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.
Vadim Romanuke
Polish Naval Academy
Gdynia, Poland